shreyamalogi/Industrial-Demand-Forecasting-Pipeline
Architected a high-performance predictive pipeline processing 15 Million transactions. Optimized memory by 70% via custom downcasting and implemented Tweedie-LightGBM to solve zero-inflation in retail demand. Delivered a 28-day future forecast for Walmart inventory with high-precision RMSE of 2.20.
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MIT
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Last pushed
Feb 03, 2026
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